1. The document discusses how companies can make advanced analytics work for them by following three steps: choosing the right data, building models that predict and optimize outcomes, and transforming the company's capabilities.
2. It emphasizes that companies first need to identify business problems and opportunities, source data creatively around those issues, and get necessary IT support. Models should be built with the goal of improving performance, not just analyzing data.
3. Transforming capabilities requires developing business-relevant analytics, embedding analytics into simple tools for managers, and developing analytical skills across the organization so data-driven insights can permeate decision making.
2. ABOUT
BIG DATA
Big data and analytics have
rocketed to the top of the
corporate agenda.
Big data could transform
the way companies do
business, delivering the kind
of performance gains last
seen in the 1990s, when
organizations redesigned
their core processes. As data-
driven strategies take hold,
they will become an
increasingly important
point of competitive
differentiation.
3. The time has come to define a
pragmatic approach to big data
and advanced analytics—one
tightly focused on how to use
the data to make better
decisions.
In choosing what to include in
your slides, opt for powerful
and interesting visuals and
large, colorful fonts.
CORE OF
THE
ARTICLE
4. PROCESS
First, companies must be able to
identify, combine, and manage multiple
sources of data. Second, they need the
capability to build advanced analytics
models for predicting and optimizing
outcomes. Third, and most critical,
management must possess the muscle to
transform the organization so that the
data and models actually yield better
decisions. Two important features
underpin those activities: a clear
strategy for how to use data and
analytics to compete, and deployment of
the right technology architecture and
5. 1. Choose the Right Data
2. Build Models That Predict and Optimize
Business Outcomes
3. Transform Your Company’s Capabilities
PROCESS
6. CHOOSE THE
RIGHT DATA
Bigger and better data give companies both more-
panoramic and more-granular views of their business
environment. The ability to see what was previously
invisible improves operations, customer experiences,
and strategy.
7. SOURCE
DATA
CREATI-
VELY.
Often companies already have the
data they need to tackle business
problems, but managers simply
don’t know how the information
can be used for key decisions.
Companies can impel a more
comprehensive look at
information sources by being
specific about business problems
they want to solve or
opportunities they hope to exploit.
8. This means quickly
identifying and connecting
the most important data for
use in analytics, followed by
a cleanup operation to
synchronize and merge
overlapping data and then
to work around missing
information.
GET THE
NECESS-
ARY IT
SUPPORT
.
9. BUILD MODELS THAT
PREDICT AND OPTIMIZE
BUSINESS OUTCOMES
Data are essential, but performance improvements and
competitive advantage arise from analytics models that
allow managers to predict and optimize outcomes. More
important, the most effective approach to building a
model rarely starts with the data; instead it originates
with identifying the business opportunity and
determining how the model can improve performance.
10. TRANSFORM YOUR
COMPANY’S
CAPABILITIES
Tools seem to be designed for experts in modeling rather
than for people on the front lines, and few managers
find the models engaging enough to champion their use
—a key failing if companies want the new methods to
permeate the organization. Bottom line: Using big data
requires thoughtful organizational change, and three
areas of action can get you there.
11. DEVELOP
BUSINESS-
RELEVANT
ANALYTICS
THAT CAN BE
PUT TO USE.
Like early CRM misadventures,
many initial implementations of
big data and analytics fail simply
because they aren’t in sync with
the company’s day-to-day
processes and decision-making
norms.
12. Managers need transparent
methods for using the new
models and algorithms on a daily
basis. By necessity, terabytes of
data and sophisticated modeling
are required to sharpen
marketing, risk management,
and operations. The key is to
separate the statistics experts and
software developers from the
managers who use the data-
driven insights.
EMBED
ANALYTICS
INTO SIMPLE
TOOLS FOR
THE FRONT
LINES.
13. DEVELOP
CAPABILIT
IES TO
EXPLOIT
BIG DATA.
Even with simple and usable
models, most organizations will
need to upgrade their analytical
skills and literacy. Managers
must come to view analytics as
central to solving problems and
identifying opportunities—to
make it part of the fabric of daily
operations. Efforts will vary
depending on a company’s goals
and desired time line.
14. ANALYSIS
List the two most important insights from
this articleSpeak loudly.
Why and how are these insights relevant to
a manager in India?
15. Adjusting culture and mind-sets typically requires a
multifaceted approach that includes training, role modeling
by leaders, and incentives and metrics to reinforce behavior.
Companies may not fully understand the data they already
have, or perhaps they’ve lost piles of money on data-
warehousing programs that never meshed with business
processes, or maybe their current analytics programs are too
complicated or don’t yield insights that can be put to use. To
improve, they should follow the process shown above.
INSIGHTS
16. Rather than undertaking massive overhauls of
their companies, executives should concentrate on
targeted efforts to source data, build models, and
transform the organizational culture. Such efforts
will play a part in maintaining flexibility. As
more companies learn the core skills of using big
data, building superior capabilities may soon
become a decisive competitive asset.
MANAGERIAL
RELEVANCE
17. THANKYOU
This presentation is made by Akankshi Mody,
DJSCE as part of DSA internship under Prof.
Sameer Mathur, IIML